Dataset of daily near-surface air temperature in China from 1979 to 2018
文献类型: 外文期刊
第一作者: Fang, Shu
作者: Fang, Shu;Fang, Shu;Xia, Xueqi;Mao, Kebiao;Cao, Mengmeng;Qin, Zhihao;Wang, Ping;Shi, Jiancheng;Bateni, Sayed M.;Bateni, Sayed M.;Xu, Tongren;Heggy, Essam;Heggy, Essam
作者机构:
期刊名称:EARTH SYSTEM SCIENCE DATA ( 影响因子:11.815; 五年影响因子:12.88 )
ISSN: 1866-3508
年卷期: 2022 年 14 卷 3 期
页码:
收录情况: SCI
摘要: Near-surface air temperature (T-a) is an important physical parameter that reflects climate change. Many methods are used to obtain the daily maximum (T-max), minimum (T-min), and average (T-avg) temperature, but are affected by multiple factors. To obtain daily T-a data (T-max, T-min, and T-avg) with high spatio-temporal resolution in China, we fully analyzed the advantages and disadvantages of various existing data. Different T-a reconstruction models were constructed for different weather conditions, and the data accuracy was improved by building correction equations for different regions. Finally, a dataset of daily temperature (T-max, T-min, and T-avg) in China from 1979 to 2018 was obtained with a spatial resolution of 0.1 degrees. For T-max, validation using in situ data shows that the root mean square error (RMSE) ranges from 0.86 to 1.78 degrees, the mean absolute error (MAE) varies from 0.63 to 1.40 degrees, and the Pearson coefficient (R-2) ranges from 0.96 to 0.99. For T-min, the RMSE ranges from 0.78 to 2.09 degrees, the MAE varies from 0.58 to 1.61 degrees, and the R-2 ranges from 0.95 to 0.99. For T-avg, the RMSE ranges from 0.35 to 1.00 degrees, the MAE varies from 0.27 to 0.68 degrees, and the R-2 ranges from 0.99 to 1.00. Furthermore, various evaluation indicators were used to analyze the temporal and spatial variation trends of Ta, and the Tavg increase was more than 0.03 degrees C yr(-1), which is consistent with the general global warming trend. In summary, this dataset has high spatial resolution and high accuracy, which compensates for the temperature values (T-max, T-min, and T-avg) previously missing at high spatial resolution and provides key parameters for the study of climate change, especially high-temperature drought and low-temperature chilling damage. The dataset is publicly available at https://doi.org/10.5281/zenodo.5502275 (Fang et al., 2021a).
分类号:
- 相关文献
作者其他论文 更多>>
-
A normal form for synchronous land surface temperature and emissivity retrieval using deep learning coupled physical and statistical methods
作者:Wang, Han;Mao, Kebiao;Mao, Kebiao;Shi, Jiancheng;Bateni, Sayed M.;Bateni, Sayed M.;Altantuya, Dorjsuren;Sainbuyan, Bayarsaikhan;Bao, Yuhai
关键词:Land surface temperature (LST); Land surface emissivity (LSE); Retrieval; Deep learning (DL); Physical and statistical methods
-
Improving Forest Above-Ground Biomass Estimation by Integrating Individual Machine Learning Models
作者:Luo, Mi;Huang, Qiuyan;Qin, Zhihao;Zhang, Liguo;Luo, Mi;Huang, Qiuyan;Qin, Zhihao;Zhang, Liguo;Anees, Shoaib Ahmad;Qin, Xin;Qin, Zhihao;Fan, Jianlong;Han, Guangping;Shafri, Helmi Zulhaidi Mohd
关键词:above-ground biomass; ensemble model; CatBoost; machine learning
-
Population genomics of Agrotis segetum provide insights into the local adaptive evolution of agricultural pests
作者:Wang, Ping;Jin, Minghui;Wu, Chao;Peng, Yan;He, Yanjin;Wang, Hanyue;Xiao, Yutao;Wang, Ping;He, Yanjin;Wang, Ping;He, Yanjin
关键词:Agrotis segetum; Population genomics; Local adaptation; Evolution
-
Precise Estimation of Sugarcane Yield at Field Scale with Allometric Variables Retrieved from UAV Phantom 4 RTK Images
作者:Huang, Qiuyan;Feng, Juanjuan;Qin, Zhihao;Huang, Yuling;Huang, Qiuyan;Gao, Maofang;Qin, Zhihao;Lai, Shuangshuang;Han, Guangping;Fan, Jinlong
关键词:crop yield estimation; UAV remote sensing; sugarcane farming; allometric variables; crop canopy surface model
-
Characterization and fine mapping of a white stripe leaf mutant in rice
作者:Hu, Binhua;He, Zhiyuan;Xiang, Xiaoli;Wang, Mingxia;Bai, Yulu;Wang, Lanying;Zhang, Cong;Wang, Ping;Pu, Zhigang;Li, Hui;Du, Anping
关键词:White stripe leaf mutant; Chloroplast; Gene mapping; Alternative splicing; Gene expression analysis
-
Exploring COVID-19 causal genes through disease-specific Cis-eQTLs
作者:Zhang, Sainan;Wang, Ping;Wang, Chao;Zhu, Zijun;Qi, Changlu;Cheng, Liang;Shi, Lei;Cheng, Liang;Zhang, Xue;Zhang, Xue;Yin, Xin;Xie, Yubin;Yuan, Shuofeng;Xie, Yubin;Yuan, Shuofeng
关键词:COVID-19; Expression quantitative trait loci; Summary data -based mendelian randomization; siRNA transfection
-
Research on the toxic effects of polyacrylamide and cadmium on plants during soil utilization of municipal sludge
作者:Cai, Jinxing;Gao, Shaomin;Wang, Ping;Shao, Chaofeng;Ju, Meiting;Liu, Jinpeng;Wang, Fang;Wang, Ping;Shao, Chaofeng;Ju, Meiting;Liu, Jinpeng;Song, Zhenyu;Liu, Jinpeng;Liu, Jinpeng
关键词:Cd; emerging contaminants; municipal sludge; PAM; sludge returned